PPG-GAN: An Adversarial Network to De-noise PPG Signals during Physical Activity

Xiaoyu Zheng, Mahsa Derakhshani, L. Barrett, Vincent M. Dwyer, Sijung Hu
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引用次数: 2

Abstract

Quality photoplethysmographic (PPG) signals are essential for accurate physiological assessment. However, the PPG acquisition process is often accompanied by spurious motion artefacts (MAs), especially during medium-high intensity physical activity. This study proposes a generative adversarial network (PPG-GAN) to create de-noised versions of measure PPG signals. The Adaptive Notch Filtration (ANF) algorithm, which enables the extraction of accurate heart rates (HR) and respiration rates (RR) from PPG signals, is used as the approximate reference signal to train the PPG-GAN. The generated PPG signals from test inputs provide a heart rate (HR) with a mean absolute error of 1.68 bpm for the IEEE-SPC dataset. A comparison with gold-standard HR and RR measurements, for our in-house dataset, show the errors in absolute value of less than 5%. The generated PPG signals, for the test clips, show a very strong correlation with their reference values, R ≈ 0.98. The results suggest that PPG-GAN could be a paradigm for MA-free PPG signal processing specifically for personal healthcare, even during high intensity activity.
PPG- gan:一种对抗网络在运动过程中去噪PPG信号
高质量的光容积脉搏波(PPG)信号对于准确的生理评估是必不可少的。然而,PPG的获取过程通常伴随着伪运动伪影(MAs),特别是在中高强度的身体活动中。本研究提出了一种生成对抗网络(PPG- gan)来创建测量PPG信号的去噪版本。采用自适应陷波滤波(ANF)算法,从PPG信号中提取准确的心率(HR)和呼吸速率(RR),作为近似参考信号训练PPG- gan。从测试输入生成的PPG信号为IEEE-SPC数据集提供了平均绝对误差为1.68 bpm的心率(HR)。与我们内部数据集的金标准HR和RR测量值进行比较,显示绝对值误差小于5%。对于测试片段,生成的PPG信号与其参考值R≈0.98具有很强的相关性。结果表明,PPG- gan可以成为一种无ma PPG信号处理的范例,特别是在个人医疗保健中,即使在高强度活动中也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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